Deep learning to extract the meteorological by-catch of wildlife cameras

Microclimate—proximal climatic variation at scales of metres and minutes—can exacerbate or mitigate the impacts of climate change on biodiversity. However, most microclimate studies are temperature centric, and do not consider meteorological factors such as sunshine, hail and snow. Meanwhile, remote...

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Main Authors: Alison, Jamie, Payne, Stephanie, Alexander, Jake, id_orcid:0 000-0003-2226-7913, Bjorkman, Anne D., Clark, Vincent Ralph, Gwate, Onalenna, Huntsaar, Maria, Iseli, Evelin, Lenoir, Jonathan, Mann, Hjalte Mads Rosenstand, Steenhuisen, Sandy-Lynn, Høye, Toke Thomas
Format: Article in Journal/Newspaper
Language:English
Published: Wiley-Blackwell 2024
Subjects:
Online Access:https://hdl.handle.net/20.500.11850/648127
https://doi.org/10.3929/ethz-b-000648127
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author Alison, Jamie
Payne, Stephanie
Alexander, Jake
id_orcid:0 000-0003-2226-7913
Bjorkman, Anne D.
Clark, Vincent Ralph
Gwate, Onalenna
Huntsaar, Maria
Iseli, Evelin
Lenoir, Jonathan
Mann, Hjalte Mads Rosenstand
Steenhuisen, Sandy-Lynn
Høye, Toke Thomas
author_facet Alison, Jamie
Payne, Stephanie
Alexander, Jake
id_orcid:0 000-0003-2226-7913
Bjorkman, Anne D.
Clark, Vincent Ralph
Gwate, Onalenna
Huntsaar, Maria
Iseli, Evelin
Lenoir, Jonathan
Mann, Hjalte Mads Rosenstand
Steenhuisen, Sandy-Lynn
Høye, Toke Thomas
author_sort Alison, Jamie
collection ETH Zürich Research Collection
description Microclimate—proximal climatic variation at scales of metres and minutes—can exacerbate or mitigate the impacts of climate change on biodiversity. However, most microclimate studies are temperature centric, and do not consider meteorological factors such as sunshine, hail and snow. Meanwhile, remote cameras have become a primary tool to monitor wild plants and animals, even at micro-scales, and deep learning tools rapidly convert images into ecological data. However, deep learning applications for wildlife imagery have focused exclusively on living subjects. Here, we identify an overlooked opportunity to extract latent, ecologically relevant meteorological information. We produce an annotated image dataset of micrometeorological conditions across 49 wildlife cameras in South Africa's Maloti-Drakensberg and the Swiss Alps. We train ensemble deep learning models to classify conditions as overcast, sunshine, hail or snow. We achieve 91.7% accuracy on test cameras not seen during training. Furthermore, we show how effective accuracy is raised to 96% by disregarding 14.1% of classifications where ensemble member models did not reach a consensus. For two-class weather classification (overcast vs. sunshine) in a novel location in Svalbard, Norway, we achieve 79.3% accuracy (93.9% consensus accuracy), outperforming a benchmark model from the computer vision literature (75.5% accuracy). Our model rapidly classifies sunshine, snow and hail in almost 2 million unlabelled images. Resulting micrometeorological data illustrated common seasonal patterns of summer hailstorms and autumn snowfalls across mountains in the northern and southern hemispheres. However, daily patterns of sunshine and shade diverged between sites, impacting daily temperature cycles. Crucially, we leverage micrometeorological data to demonstrate that (1) experimental warming using open-top chambers shortens early snow events in autumn, and (2) image-derived sunshine marginally outperforms sensor-derived temperature when predicting bumblebee foraging. ...
format Article in Journal/Newspaper
genre Svalbard
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op_doi https://doi.org/20.500.11850/64812710.3929/ethz-b-00064812710.1111/gcb.17078
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info:eu-repo/grantAgreement/SNF/ERA-NET + EJP/193809
http://hdl.handle.net/20.500.11850/648127
op_rights info:eu-repo/semantics/openAccess
http://creativecommons.org/licenses/by-nc/4.0/
Creative Commons Attribution-NonCommercial 4.0 International
op_source Global Change Biology, 30 (1)
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spelling ftethz:oai:www.research-collection.ethz.ch:20.500.11850/648127 2025-03-30T15:28:43+00:00 Deep learning to extract the meteorological by-catch of wildlife cameras Alison, Jamie Payne, Stephanie Alexander, Jake id_orcid:0 000-0003-2226-7913 Bjorkman, Anne D. Clark, Vincent Ralph Gwate, Onalenna Huntsaar, Maria Iseli, Evelin Lenoir, Jonathan Mann, Hjalte Mads Rosenstand Steenhuisen, Sandy-Lynn Høye, Toke Thomas 2024-01 application/application/pdf https://hdl.handle.net/20.500.11850/648127 https://doi.org/10.3929/ethz-b-000648127 en eng Wiley-Blackwell info:eu-repo/semantics/altIdentifier/doi/10.1111/gcb.17078 info:eu-repo/semantics/altIdentifier/wos/001151213000092 info:eu-repo/grantAgreement/SNF/ERA-NET + EJP/193809 http://hdl.handle.net/20.500.11850/648127 info:eu-repo/semantics/openAccess http://creativecommons.org/licenses/by-nc/4.0/ Creative Commons Attribution-NonCommercial 4.0 International Global Change Biology, 30 (1) alpine ecology automated monitoring bees micrometeorology proximal sensing snow melt time-lapse photography Trifolium pratense info:eu-repo/semantics/article info:eu-repo/semantics/publishedVersion 2024 ftethz https://doi.org/20.500.11850/64812710.3929/ethz-b-00064812710.1111/gcb.17078 2025-03-05T22:09:16Z Microclimate—proximal climatic variation at scales of metres and minutes—can exacerbate or mitigate the impacts of climate change on biodiversity. However, most microclimate studies are temperature centric, and do not consider meteorological factors such as sunshine, hail and snow. Meanwhile, remote cameras have become a primary tool to monitor wild plants and animals, even at micro-scales, and deep learning tools rapidly convert images into ecological data. However, deep learning applications for wildlife imagery have focused exclusively on living subjects. Here, we identify an overlooked opportunity to extract latent, ecologically relevant meteorological information. We produce an annotated image dataset of micrometeorological conditions across 49 wildlife cameras in South Africa's Maloti-Drakensberg and the Swiss Alps. We train ensemble deep learning models to classify conditions as overcast, sunshine, hail or snow. We achieve 91.7% accuracy on test cameras not seen during training. Furthermore, we show how effective accuracy is raised to 96% by disregarding 14.1% of classifications where ensemble member models did not reach a consensus. For two-class weather classification (overcast vs. sunshine) in a novel location in Svalbard, Norway, we achieve 79.3% accuracy (93.9% consensus accuracy), outperforming a benchmark model from the computer vision literature (75.5% accuracy). Our model rapidly classifies sunshine, snow and hail in almost 2 million unlabelled images. Resulting micrometeorological data illustrated common seasonal patterns of summer hailstorms and autumn snowfalls across mountains in the northern and southern hemispheres. However, daily patterns of sunshine and shade diverged between sites, impacting daily temperature cycles. Crucially, we leverage micrometeorological data to demonstrate that (1) experimental warming using open-top chambers shortens early snow events in autumn, and (2) image-derived sunshine marginally outperforms sensor-derived temperature when predicting bumblebee foraging. ... Article in Journal/Newspaper Svalbard ETH Zürich Research Collection
spellingShingle alpine ecology
automated monitoring
bees
micrometeorology
proximal sensing
snow melt
time-lapse photography
Trifolium pratense
Alison, Jamie
Payne, Stephanie
Alexander, Jake
id_orcid:0 000-0003-2226-7913
Bjorkman, Anne D.
Clark, Vincent Ralph
Gwate, Onalenna
Huntsaar, Maria
Iseli, Evelin
Lenoir, Jonathan
Mann, Hjalte Mads Rosenstand
Steenhuisen, Sandy-Lynn
Høye, Toke Thomas
Deep learning to extract the meteorological by-catch of wildlife cameras
title Deep learning to extract the meteorological by-catch of wildlife cameras
title_full Deep learning to extract the meteorological by-catch of wildlife cameras
title_fullStr Deep learning to extract the meteorological by-catch of wildlife cameras
title_full_unstemmed Deep learning to extract the meteorological by-catch of wildlife cameras
title_short Deep learning to extract the meteorological by-catch of wildlife cameras
title_sort deep learning to extract the meteorological by-catch of wildlife cameras
topic alpine ecology
automated monitoring
bees
micrometeorology
proximal sensing
snow melt
time-lapse photography
Trifolium pratense
topic_facet alpine ecology
automated monitoring
bees
micrometeorology
proximal sensing
snow melt
time-lapse photography
Trifolium pratense
url https://hdl.handle.net/20.500.11850/648127
https://doi.org/10.3929/ethz-b-000648127